Predicting compressor mass flow rate using various machine learning approaches

I. Yazar, Yildiray Anagun, Ş. Işık
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Abstract

A major focus of the present study is to construct high-fidelity models for predicting corrected mass flow rates based on the collected compressor map data. Both traditional machine learning research and modern deep learning techniques have been employed to obtain well-fitted regression models of compressor mass flow rate. As traditional machine learning methods, Multiple Linear Regression and Random Forest, are conducted on compressor maps for prediction of corrected mass flow rate. The time series-based deep learning models are able to capture the overall trend of a given input for specific map data. Therefore, a time series-based deep learning technique, namely Gated Recurrent Unit has been employed to improve regression results. Besides, the prediction capabilities of the models, results also show that the proposed models can be used for the development of dynamic aero-thermal mathematical models of gas turbine engines and mass flow rate models created for dynamic compressors in other disciplines.
使用各种机器学习方法预测压缩机质量流量
本研究的一个主要重点是根据收集到的压缩机地图数据,构建预测修正质量流量的高保真模型。为了获得拟合良好的压缩机质量流量回归模型,我们采用了传统的机器学习研究方法和现代的深度学习技术。传统的机器学习方法包括多重线性回归和随机森林,用于预测压缩机地图上的修正质量流量。基于时间序列的深度学习模型能够捕捉特定地图数据给定输入的整体趋势。因此,我们采用了一种基于时间序列的深度学习技术,即门控递归单元(Gated Recurrent Unit)来改善回归结果。除了模型的预测能力外,结果还表明,所提出的模型可用于开发燃气涡轮发动机的动态航空热数学模型和其他学科中为动态压缩机创建的质量流量模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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